Simulating analogue film damage to analyse and improve artefact restoration on high-resolution scans

02/20/2023
by   Daniela Ivanova, et al.
0

Digital scans of analogue photographic film typically contain artefacts such as dust and scratches. Automated removal of these is an important part of preservation and dissemination of photographs of historical and cultural importance. While state-of-the-art deep learning models have shown impressive results in general image inpainting and denoising, film artefact removal is an understudied problem. It has particularly challenging requirements, due to the complex nature of analogue damage, the high resolution of film scans, and potential ambiguities in the restoration. There are no publicly available high-quality datasets of real-world analogue film damage for training and evaluation, making quantitative studies impossible. We address the lack of ground-truth data for evaluation by collecting a dataset of 4K damaged analogue film scans paired with manually-restored versions produced by a human expert, allowing quantitative evaluation of restoration performance. We construct a larger synthetic dataset of damaged images with paired clean versions using a statistical model of artefact shape and occurrence learnt from real, heavily-damaged images. We carefully validate the realism of the simulated damage via a human perceptual study, showing that even expert users find our synthetic damage indistinguishable from real. In addition, we demonstrate that training with our synthetically damaged dataset leads to improved artefact segmentation performance when compared to previously proposed synthetic analogue damage. Finally, we use these datasets to train and analyse the performance of eight state-of-the-art image restoration methods on high-resolution scans. We compare both methods which directly perform the restoration task on scans with artefacts, and methods which require a damage mask to be provided for the inpainting of artefacts.

READ FULL TEXT

page 2

page 4

page 5

page 8

page 9

page 11

page 12

page 13

research
07/16/2022

Global-Local Stepwise Generative Network for Ultra High-Resolution Image Restoration

While the research on image background restoration from regular size of ...
research
11/02/2022

CarDD: A New Dataset for Vision-based Car Damage Detection

Automatic car damage detection has attracted significant attention in th...
research
06/22/2022

Towards Ground Truth for Single Image Deraining

We propose a large-scale dataset of real-world rainy and clean image pai...
research
11/18/2018

Deep Learning with Inaccurate Training Data for Image Restoration

In many applications of deep learning, particularly those in image resto...
research
05/19/2023

SIDAR: Synthetic Image Dataset for Alignment Restoration

Image alignment and image restoration are classical computer vision task...
research
03/24/2023

Fantastic Breaks: A Dataset of Paired 3D Scans of Real-World Broken Objects and Their Complete Counterparts

Automated shape repair approaches currently lack access to datasets that...
research
04/01/2023

Automatic High Resolution Wire Segmentation and Removal

Wires and powerlines are common visual distractions that often undermine...

Please sign up or login with your details

Forgot password? Click here to reset